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 Personal Assistant Systems


Google Assistant will let your kids ask it where you are

Engadget

If your family is anything like mine, smart displays like the Nest Hub tend to get a lot of use by both adults and kids. The conversational capabilities of Google Assistant make that almost a certainty. So it makes sense that for one of its last major updates of 2020, Google is focusing on families with a suite of new features for Assistant-enabled smart displays and speakers. To start, Google is adding a new Family Notes feature that will let your clan append digital sticky notes to the Nest Hub and other smart displays. You can use them to leave messages and keep track of shared to-dos.


Alexa Routines now work with Amazon Fire TV

Engadget

The feature allows you to carry out common actions on several smart devices simultaneously with a single custom Alexa command. For instance, you may already switch on your bedroom light and activate your coffee machine as part of your wake-up routine, and perhaps you'll want to turn on your TV to your favorite news network as well. Amazon suggests you could use routines to pause what's playing on your TV and turn on certain lights when you want to get up and grab a snack. Along with pausing and switching your TV on or off, you can use routines to start playing certain content on Fire TV or open a specific app. Alexa Routines are supported on all Fire TV devices worldwide.


Language Acquisition Environment for Human-Level Artificial Intelligence

arXiv.org Artificial Intelligence

Despite recent advances in many application-specific domains, we do not know how to build a human-level artificial intelligence (HLAI). We conjecture that learning from others' experience with the language is the essential characteristic that differentiates human intelligence from the rest. Humans can update the action-value function only with the verbal description as if they experience states, actions, and corresponding rewards sequences first hand. In this paper, we present our ongoing effort to build an environment to facilitate the research for models of this capability. In this environment, there are no explicit definitions of tasks or rewards given when accomplishing those tasks. Rather the models experience the experience of the human infants from fetus to 12 months. The agent should learn to speak the first words as a human child does. We expect the environment will contribute to the research for HLAI.


KddRES: A Multi-level Knowledge-driven Dialogue Dataset for Restaurant Towards Customized Dialogue System

arXiv.org Artificial Intelligence

Compared with CrossWOZ (Chinese) and MultiWOZ (English) dataset which have coarse-grained information, there is no dataset which handle fine-grained and hierarchical level information properly. In this paper, we publish a first Cantonese knowledge-driven Dialogue Dataset for REStaurant (KddRES) in Hong Kong, which grounds the information in multi-turn conversations to one specific restaurant. Our corpus contains 0.8k conversations which derive from 10 restaurants with various styles in different regions. In addition to that, we designed fine-grained slots and intents to better capture semantic information. The benchmark experiments and data statistic analysis show the diversity and rich annotations of our dataset. We believe the publish of KddRES can be a necessary supplement of current dialogue datasets and more suitable and valuable for small and middle enterprises (SMEs) of society, such as build a customized dialogue system for each restaurant. The corpus and benchmark models are publicly available.


COVID-19 Pandemic Puts Workplace Technology in the Spotlight

#artificialintelligence

The COVID-19 pandemic has elevated the role of technology in the workplace, and more employers are relying on artificial intelligence, machine learning and virtual reality to save money and limit in-person contact. These technologies can be effective tools for hiring, training and assessing employee performance, as well as creating meaningful interactions during a time of isolation. However, employers must ensure that their use of technology doesn't run afoul of employment and labor laws. "It's incredibly important for HR organizations and hiring managers to understand the nuances of the technology that they're using if it is making decisions on their behalf," said Marc Goldberg, chief technology officer at the Society for Human Resource Management (SHRM) in Alexandria, Va. He was speaking during a panel discussion at the American Bar Association's 14th Annual Labor and Employment Law Conference, which was held virtually.


Machine Learning for beginnings

#artificialintelligence

Machine learning is an application of artificial intelligence (AI) that provides systems the ability to automatically learn and improve from experience without being explicitly programmed. Machine learning focuses on the development of computer programs that can access data and use it learn for themselves, i know that sounds a little bit confuse but will be clear at the end. At a very high level, machine learning is the process of teaching a computer system how to make accurate predictions when fed data. Those predictions could be answering whether a piece of fruit in a photo is a banana or an apple, spotting people crossing the road in front of a self-driving car, whether the use of the word book in a sentence relates to a paperback or a hotel reservation, whether an email is spam, or recognizing speech accurately enough to generate captions for a YouTube video. The key difference from traditional computer software is that a human developer hasn't written code that instructs the system how to tell the difference between the banana and the apple.


Optimizing Offer Sets in Sub-Linear Time

arXiv.org Artificial Intelligence

Personalization and recommendations are now accepted as core competencies in just about every online setting, ranging from media platforms to e-commerce to social networks. While the challenge of estimating user preferences has garnered significant attention, the operational problem of using such preferences to construct personalized offer sets to users is still a challenge, particularly in modern settings where a massive number of items and a millisecond response time requirement mean that even enumerating all of the items is impossible. Faced with such settings, existing techniques are either (a) entirely heuristic with no principled justification, or (b) theoretically sound, but simply too slow to work. Thus motivated, we propose an algorithm for personalized offer set optimization that runs in time sub-linear in the number of items while enjoying a uniform performance guarantee. Our algorithm works for an extremely general class of problems and models of user choice that includes the mixed multinomial logit model as a special case. We achieve a sub-linear runtime by leveraging the dimensionality reduction from learning an accurate latent factor model, along with existing sub-linear time approximate near neighbor algorithms. Our algorithm can be entirely data-driven, relying on samples of the user, where a `sample' refers to the user interaction data typically collected by firms. We evaluate our approach on a massive content discovery dataset from Outbrain that includes millions of advertisements. Results show that our implementation indeed runs fast and with increased performance relative to existing fast heuristics.


Latest Achievements of Artificial Intelligence - Tech Research Online

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Artificial Intelligence (AI) technology evolves rapidly, and it has great potential in the future. According to the latest reports, the market size of AI is projected to reach $266.92 billion by 2027 with a Compound Annual Growth Rate (CAGR) of 33.2%. A lot of world-known brands and tech companies are already using AI-powered solutions to improve the service, engage customers, enhance customer experience, and increase efficiency and productivity. Text generation, face and speech recognition, automated translation, drug discovery are a few AI achievements that are worthy of your attention. AI-powered solutions are used by dozens of companies and implemented in different fields, changing a lot of industries and reshaping the landscape of health, learning, daily living, and so on.


The Future of Education: Can AI Make Us Smarter? - ReadWrite

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Whether you realize it or not, AI has found its way into our daily life. The best examples are your smartphone's virtual assistant and Netflix's recommendation system. AI has also crept its way into education. Students use AI to improve their learning, while teachers leverage it for online assessment and identifying students' strengths and weaknesses. As we look at the future of education, we must ask the question: can AI make us smarter?


Artificial Intelligence Expert Certification (2021 Edition)

#artificialintelligence

Artificial Intelligence (AI) seems to be a unique technology of making a machine, a robot fully autonomous. AI is an analysis of how the machine is thinking, studying, determining, and functioning when it is trying to solve problems. These kinds of problems are present in all fields, the most emerging ones, and even beyond. The aim of Artificial Intelligence is to enhance machine functions relating to human knowledge, such as reasoning, learning, and problems along with the ability to manipulate things. For example, virtual assistants or chatbots offer expert advice.